Profit Maximization using Social Networks in Two-Phase Setting

Poonam Sharma, Suman Banerjee
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Abstract

Now-a-days, \emph{Online Social Networks} have been predominantly used by commercial houses for viral marketing where the goal is to maximize profit. In this paper, we study the problem of Profit Maximization in the two\mbox{-}phase setting. The input to the problem is a \emph{social network} where the users are associated with a cost and benefit value, and a fixed amount of budget splitted into two parts. Here, the cost and the benefit associated with a node signify its incentive demand and the amount of benefit that can be earned by influencing that user, respectively. The goal of this problem is to find out the optimal seed sets for both phases such that the aggregated profit at the end of the diffusion process is maximized. First, we develop a mathematical model based on the \emph{Independent Cascade Model} of diffusion that captures the aggregated profit in an \emph{expected} sense. Subsequently, we show that selecting an optimal seed set for the first phase even considering the optimal seed set for the second phase can be selected efficiently, is an $\textsf{NP}$-Hard Problem. Next, we propose two solution methodologies, namely the \emph{single greedy} and the \emph{double greedy} approach for our problem that works based on marginal gain computation. A detailed analysis of both methodologies has been done to understand their time and space requirements. We perform an extensive set of experiments to demonstrate the effectiveness and efficiency of the proposed approaches with real-world datasets. From the experiments, we observe that the proposed solution approaches lead to more profit compared to the baseline methods and in particular, the double greedy approach leads to up to $5 \%$ improvement compared to its single\mbox{-}phase counterpart.
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两阶段环境下社会网络的利润最大化
如今,\emph{在线社交网络}主要被商业住宅用于病毒式营销,其目标是实现利润最大化。本文研究了两种\mbox{-}阶段设置下的利润最大化问题。问题的输入是\emph{社交网络},其中用户与成本和收益值相关联,并且将固定的预算分成两部分。在这里,与节点相关的成本和收益分别表示其激励需求和通过影响该用户可以获得的收益。该问题的目标是找出两个阶段的最优种子集,使扩散过程结束时的总利润最大化。首先,我们建立了一个基于\emph{独立级联模型}扩散的数学模型,该模型在\emph{预料之中}意义上捕获了总利润。随后,我们证明了即使考虑了第二阶段的最优种子集,也可以有效地选择第一阶段的最优种子集,这是一个$\textsf{NP}$ -难问题。接下来,我们提出两种解决方法,即\emph{单身贪婪}和\emph{双重贪婪}方法,用于基于边际增益计算的问题。对这两种方法进行了详细的分析,以了解它们的时间和空间要求。我们进行了一组广泛的实验来证明所提出的方法与现实世界数据集的有效性和效率。从实验中,我们观察到,与基线方法相比,所提出的解决方案方法带来了更多的利润,特别是,与单一\mbox{-}阶段相比,双贪婪方法带来了$5 \%$的改进。
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